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Bagging and boosting variants for handling classifications problems: a survey

机译:处理分类问题的装袋和强化包装:一项调查

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摘要

Bagging and boosting are two of the most well-known ensemble learning methods due to their theoretical performance guarantees and strong experimental results. Since bagging and boosting are an effective and open framework, several researchers have proposed their variants, some of which have turned out to have lower classification error than the original versions. This paper tried to summarize these variants and categorize them into groups. We hope that the references cited cover the major theoretical issues, and provide access to the main branches of the literature dealing with such methods, guiding the researcher in interesting research directions.
机译:套袋和助推由于其理论性能保证和强大的实验结果,是最著名的两种整体学习方法。由于装袋和装袋是一种有效且开放的框架,因此,许多研究人员提出了它们的变体,其中一些变体的分类误差比原始版本低。本文试图总结这些变体并将其分类。我们希望所引用的参考文献涵盖主要的理论问题,并为处理此类方法的文献提供主要途径,以指导研究人员进行有趣的研究方向。

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